Review of Poultry Monitoring using Computer Vision

Main Article Content

O. M. Olanrewaju
N. Abdulhafiz
A. D.. Liman

Abstract

Poultry farming is an important unit in global agronomy, contributing immensely to the production of meat and eggs. Safeguarding the health and welfare of poultry is vital for ethical and financial reasons. In recent years, computer vision awareness has gained prominence as a powerful tool for poultry monitoring. This review paper provides an outline of the application of computer vision in poultry monitoring. We explore the different phases of this technology, with real-time image acquisition, object recognition, and behavior analysis. By connecting cameras and sophisticated algorithms, a computer vision system can distinguish unusual behavior, track poultry activities and observe its environmental conditions. Furthermore, this study discovers the benefits of computer vision in poultry farming, including early detection of disease, better production efficiency and improved animal welfare. In conclusion, the application of computer vision in monitoring poultry holds immense potential for the industry; by providing a corridor to a more sustainable and ethical poultry farming system with increased productivity. This paper equally discusses recent developments, challenges, forthcoming prospects in the field and academic research gaps identified.

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How to Cite
Olanrewaju, O. M., Abdulhafiz, N., & Liman, A. D. (2024). Review of Poultry Monitoring using Computer Vision. Nigerian Journal of Physics, 33(1), 108–113. https://doi.org/10.62292/njp.v33i1.2024.216
Section
Review Articles

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